Speaker identification analysis for SGMM with k-means and fuzzy C-means clustering using SVM statistical technique

K. Manikandan, E. Chandra
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Abstract

Speaker Identification denotes the speech samples of known speaker and it identifies the best matches of the input model. The SGMFC method is the combination of Sub Gaussian Mixture Model (SGMM) with the Mel-frequency Cepstral Coefficients (MFCC) for feature extraction. The SGMFC method minimizes the error rate, memory footprint and also computational throughput measure needs of a medium-vocabulary speaker identification system, supposed for preparation on a transportable or otherwise. Fuzzy C-means and k-means clustering are used in the SGMM method to attain the improved efficiency and their outcomes with parameters such as precision, sensitivity and specificity are compared.
基于支持向量机统计技术的k-均值和模糊c -均值聚类的SGMM说话人识别分析
说话人识别表示已知说话人的语音样本,并识别输入模型的最佳匹配。SGMFC方法是将亚高斯混合模型(SGMM)与mel频率倒谱系数(MFCC)相结合进行特征提取。SGMFC方法最大限度地降低了中等词汇量说话人识别系统的错误率、内存占用和计算吞吐量测量需求,假设在可移动或其他方式上准备。采用模糊C-means聚类和k-means聚类来提高SGMM方法的效率,并比较其精度、灵敏度和特异性等参数的结果。
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